- An ARX structure (A(q) y(t) = B(q) u(t) + e(t)) , you would set na = 2, nb = 3, nk = 0.
- An OE structure (y(t) = B(q)/F(q) u(t) + e(t)), you would set nf = 2, nb = 3, nk = 0.
How to use the Recursive Polynomial Model Estimator block for MISO system
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Hi guys!
I am trying to use the Recursive Polynomial Model Estimator block to develop an adaptive control for a MISO system.
But at first I have already encountered some problems that I am not being able to solve:
The blocks in the simulink look like this:
With the variables Pi, Pf and D as Nx2 doble vector, with the first column containing the time values, as is needed for the space state plant model.
And with the parameters settins as follow:
Does any one know how to fix this?
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Answers (1)
Rajiv Singh
on 7 Nov 2022
Not sure what you have in mind. Can you write the equation whose coefficients you are trying to estimate using the recursive polynomial block?
A hint: Suppose the equation is:
y(t) = a1*y(t-1) + a2*y(t-2) + b0*y(t) + b1*u(t-1) + b2*u(t-2) + b3*u(t-2)
that relates the output y(t) to the input u(t). Here, the the unknowns are z1, z2, b0, b1, b2, b3. However, the number of inputs is still only one (i.e., u(t)), since the notion of "inputs" is in the physical sense. So when you use a recursive polynomial block, you use a scalar signal for input (u(t)) and another scalar signal for the output (y(t)). In the example above the number of lags in the output is 2 and the number of lags in the input is 3. The input to output delay (nk) is 0 since the term u(t) appears directly in the equation.
So if you are using:
(Bottomline: do not confuse the number of terms in the equation with the dimension of the input signal).
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